Optimal linear reconstruction of dark matter from halo catalogs
Yan-Chuan Cai, Gary Bernstein, Ravi K. Sheth (UPenn)

TL;DR
This paper derives an optimal weighting scheme for dark matter halos that significantly reduces stochasticity in mass reconstruction, improving cosmological measurements and reducing observational costs.
Contribution
It introduces a new optimal weight function w(M) for halos that minimizes stochasticity in mass estimates, outperforming traditional methods like mass or bias weighting.
Findings
Optimal w(M) reduces stochasticity by up to 15 times compared to Poisson estimator.
Mass power spectrum measurement could be achieved with 5 times fewer redshifts using optimal weighting.
Blue or emission-line galaxies are about 100 times less efficient at mass reconstruction than optimal weighting.
Abstract
We derive the weight function w(M) to apply to dark-matter halos that minimizes the stochasticity between the weighted halo distribution and its underlying mass density field. The optimal w(M) depends on the range of masses being used in the estimator. In N-body simulations, the Poisson estimator is up to 15 times noisier than the optimal. Implementation of the optimal weight yields significantly lower stochasticity than weighting halos by their mass, bias or equal. Optimal weighting could make cosmological tests based on the matter power spectrum or cross-correlations much more powerful and/or cost-effective. A volume-limited measurement of the mass power spectrum at k=0.2h/Mpc over the entire z<1 universe could ideally be done using only 6 million redshifts of halos with mass M>6\times10^{13}h^{-1}M_\odot (1\times10^{13}) at z=0 (z=1); this is 5 times fewer than the Poisson model…
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